A deep learning approach for direction of arrival estimation using
automotive-grade ultrasonic sensors
- URL: http://arxiv.org/abs/2202.12684v1
- Date: Fri, 25 Feb 2022 13:43:20 GMT
- Title: A deep learning approach for direction of arrival estimation using
automotive-grade ultrasonic sensors
- Authors: Mohamed Shawki Elamir, Heinrich Gotzig, Raoul Zoellner, Patrick Maeder
- Abstract summary: Deep learning approach is presented for direction of arrival estimation using automotive-grade ultrasonic sensors.
It is demonstrated how the proposed approach can overcome some of the known limitations of the existing algorithms.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this paper, a deep learning approach is presented for direction of arrival
estimation using automotive-grade ultrasonic sensors which are used for driving
assistance systems such as automatic parking. A study and implementation of the
state of the art deterministic direction of arrival estimation algorithms is
used as a benchmark for the performance of the proposed approach. Analysis of
the performance of the proposed algorithms against the existing algorithms is
carried out over simulation data as well as data from a measurement campaign
done using automotive-grade ultrasonic sensors. Both sets of results clearly
show the superiority of the proposed approach under realistic conditions such
as noise from the environment as well as eventual errors in measurements. It is
demonstrated as well how the proposed approach can overcome some of the known
limitations of the existing algorithms such as precision dilution of
triangulation and aliasing.
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